Current conversational AI systems aim to understand a set of pre-designed requests and execute related actions, which limits them to evolve naturally and adapt based on human interactions. Motivated by how children learn their first language interacting with adults, this paper describes a new Teachable AI system that is capable of learning new language nuggets called concepts, directly from end users using live interactive teaching sessions. The proposed setup uses three models to: a) Identify gaps in understanding automatically during live conversational interactions, b) Learn the respective interpretations of such unknown concepts from live interactions with users, and c) Manage a classroom sub-dialogue specifically tailored for interactive teaching sessions. We propose state-of-the-art transformer based neural architectures of models, fine-tuned on top of pre-trained models, and show accuracy improvements on the respective components. We demonstrate that this method is very promising in leading way to build more adaptive and personalized language understanding models.
翻译:当前的对话性人工智能系统旨在理解一套预先设计的要求并执行相关的行动,从而限制他们自然地进化和根据人类互动进行适应。本文件以儿童如何学习与成人互动的第一语言为动力,介绍了一个新的可教授性人工智能系统,该系统能够直接从最终用户使用现场交互式教学课程学习称为概念的新语言纳格特。拟议设置使用三种模式:(a) 在现场互动中自动找出理解差距;(b) 从与用户的现场互动中了解对此类未知概念的各自解释;(c) 管理专门为交互式教学课程设计的课堂次对话。我们提出了基于最先进的变异器模型神经结构,在预先培训的模型上进行微调,并显示各自组成部分的准确性改进。我们证明,这一方法在建设更具适应性和个性化的语言理解模型方面很有希望。